High Fidelity Human Trajectory Tracking Based on Surveillance Camera Data

Zexu Li, Lei Fang
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Abstract

Human crowds exhibit a wide range of interesting patterns, and measuring them is of great interest in areas ranging from psychology and social science to civil engineering. While \textit{in situ} measurements of human crowd patterns require large amounts of time and labor to obtain, human crowd experiments may result in statistics different from those that would emerge with a naturally emerging crowd. Here we present a simple, broadly applicable, highly accurate human crowd tracking technique to extract high-fidelity kinematic information from widely available surveillance camera videos. With the proposed technique, researchers can access scientific crowd data on a scale that is orders of magnitude larger than before. In addition to being able to measure an individual's time-resolved position and velocity, our technique also offers high validity time-resolved acceleration and step frequency, and step length. We demonstrate the applicability of our technique by applying it to surveillance camera videos in Tokyo Shinjuku streamed on YouTube and exploiting its high fidelity to expose the hidden contribution of walking speed variance at the crossroad. The high fidelity and simplicity of this powerful technique open up the way to utilize the large volume of existing surveillance camera data around the world for scientific studies.
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基于监控摄像头数据的高保真人体轨迹跟踪
人类人群表现出多种有趣的模式,从心理学、社会科学到土木工程等领域,都对测量这些模式非常感兴趣。对人类人群模式的现场测量需要花费大量的时间和人力,而人类人群实验得出的统计结果可能与自然涌现的人群不同。在此,我们提出了一种简单、广泛适用、高度精确的人类人群跟踪技术,可从广泛可用的监控摄像机视频中提取高保真运动学信息。利用所提出的技术,研究人员可以获取比以前大几个数量级的科学人群数据。除了能够测量个人的时间分辨位置和速度外,我们的技术还能提供高有效性的时间分辨加速度、步频和步长。我们将该技术应用于 YouTube 上流传的东京新宿的监控摄像机视频,并利用其高保真性揭示了十字路口行走速度差异的隐性贡献,从而证明了该技术的适用性。这项强大技术的高保真性和简易性为利用全球现有的大量监控摄像数据进行科学研究开辟了道路。
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